基于压缩感知的立体图像表示

A. S. Akbari, P. B. Zadeh, M. Moniri
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引用次数: 4

摘要

提出了一种基于小波变换增益的压缩感知立体图像表示技术。首先使用基于运动补偿提升的小波变换将输入的立体图像分解为低通和高通视图。然后,二维空间小波变换进一步将低通视图解相关到其子带中。利用小波变换增益调节不同子带的阈值。然后对高频子带和高通视图中的系数进行硬阈值处理,生成其稀疏子带和视图。然后使用压缩感知方法生成不同稀疏子带和视图的测量值。最后对基带系数和测量值进行无损编码。压缩感知在自然图像压缩中的应用还处于初级阶段。因此,通常将它们的性能与标准编解码器进行比较。所提出的编解码器的性能优于目前的技术水平,并且在主观上优于JPEG。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stereo image representation using compressive sensing
This paper presents a compressive sensing based stereo image representation technique using wavelet transform gain. The pair of input stereo images is first decomposed into its low-pass and high-pass views using a motion compensated lifting based wavelet transform. A 2D spatial wavelet transform is then further de-correlates the low-pass view into its sub-bands. Wavelet transform gains are employed to regulate threshold value for different sub-bands. The coefficients in high frequency sub-bands and high-pass view are then hard thresholded to generate their sparse sub-bands and view. The compressive sensing method is then used to generate measurements for different resulting sparse sub-bands and view. The baseband coefficients and measurements are finally losslessly coded. The application of compressive sensing in compressing natural images is in its early stages. Therefore, their performances are usually compared with each other than standard codecs. The performance of the proposed codec is superior to the state of the art and is superior to JPEG subjectively.
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